You have two options:

1: you can bin the data first. This can be done easily with the `numpy.histogram`

function:

import numpy as np
import matplotlib.pyplot as plt
data = np.loadtxt('Filename.txt')
# Choose how many bins you want here
num_bins = 20
# Use the histogram function to bin the data
counts, bin_edges = np.histogram(data, bins=num_bins, normed=True)
# Now find the cdf
cdf = np.cumsum(counts)
# And finally plot the cdf
plt.plot(bin_edges[1:], cdf)
plt.show()

2: rather than use `numpy.cumsum`

, just plot the `sorted_data`

array against the number of items smaller than each element in the array (see this answer for more details http://stackoverflow.com/a/11692365/588071):

import numpy as np
import matplotlib.pyplot as plt
data = np.loadtxt('Filename.txt')
sorted_data = np.sort(data)
yvals=np.arange(len(sorted_data))/float(len(sorted_data))
plt.plot(sorted_data,yvals)
plt.show()